Abstract

Introduction: Recognition of Vehicle License Number Plates (VLNP) is an important task. It is valuable in numerous applications, such as entrance admission, security, parking control, road traffic control, and speed control. An ANPR (Automatic Number Plate Recognition) is a system in which the image of the vehicle is captured through high definition cameras. The image is then used to detect vehicles of any type (car, van, bus, truck, and bike, etc.), its’ color (white, black, blue, etc.), and its’ model (Toyota Corolla, Honda Civic etc.). Furthermore, this image is processed using segmentation and OCR techniques to get the vehicle registration number in form of characters. Once the required information is extracted from VLNP, this information is sent to the control center for further processing. Aim: ANPR is a challenging problem, especially when the number plates have varying sizes, the number of lines, fonts, background diversity, etc. Different ANPR systems have been suggested for different countries, including Iran, Malaysia, and France. However, only a limited work exists for Pakistan vehicles. Therefore, in this study, we aim to propose a novel ANPR framework for Pakistan VLNP recognition. Methods: The proposed ANPR system functions in three different steps: (i) - Number Plate Localization (NPL); (ii)- Character Segmentation (CS); and (iii)- Optical Character Recognition (OCR), involving template-matching mechanism. The proposed ANPR approach scans the number plate and instantly checks against database records of vehicles of interest. It can further extract the real=time information of driver and vehicle, for instance, license of the driver and token taxes of vehicles are paid or not, etc. Results: Finally, the proposed ANPR system has been evaluated on several real-time images from various formats of number plates practiced in Pakistan territory. In addition to this, the proposed ANPR system has been compared with the existing ANPR systems proposed specifically for Pakistani licensed number plates. Conclusion: The proposed ANPR Model has both time and money-saving profit for law enforcement agencies and private organizations for improving homeland security. There is a need to expand the types of vehicles that can be detected: trucks, buses, scooters, bikes. This technology can be further improved to detect the crashed vehicle’s number plate in an accident and alert the closest hospital and police station about the accident, thus saving lives.

Highlights

  • Recognition of Vehicle License Number Plates (VLNP) is an important task

  • Results: the proposed Automatic Number Plate Recognition (ANPR) system has been evaluated on several real-time images from various formats of number plates practiced in Pakistan territory

  • The proposed ANPR system has been compared with the existing ANPR systems proposed for Pakistani licensed number plates

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Summary

Introduction

Recognition of Vehicle License Number Plates (VLNP) is an important task. It is valuable in numerous applications, such as entrance admission, security, parking control, road traffic control, and speed control. Different researchers came with their own algorithm to detect the number plate, but each has some limitations; (1)- for some images, existing ANPR systems work perfectly, and for some images, it does not; (2)- challenge is the diversity in the number plate writing style [11]; (3)- images captured under the severe weather and poor lighting conditions; (4)- low camera resolution; (5)- ANPR systems work better using the standard number plate, it becomes very tough to identify if the number plate has no standard size and pattern [2, 3].this area is still growing and still imperfect It requires a competent algorithm for better performance. In addition to this, interested readers are further advised to study the detailed survey on ANPR in previous studies [7, 8]

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